Kozdrowski Stanisław, Cichosz Paweł, Paziewski Piotr, Sujecki Sławomir
Computer Science Institute, Warsaw University of Technology, Nowowiejska 15/19, 00-665 Warsaw, Poland.
Telecommunications and Teleinformatics Department, Wroclaw University of Science and Technology, Wyb. Wyspianskiego 27, 50-370 Wroclaw, Poland.
Entropy (Basel). 2020 Dec 22;23(1):7. doi: 10.3390/e23010007.
Increasing demand in the backbone Dense Wavelength Division (DWDM) Multiplexing network traffic prompts an introduction of new solutions that allow increasing the transmission speed without significant increase of the service cost. In order to achieve this objective simpler and faster, DWDM network reconfiguration procedures are needed. A key problem that is intrinsically related to network reconfiguration is that of the quality of transmission assessment. Thus, in this contribution a Machine Learning (ML) based method for an assessment of the quality of transmission is proposed. The proposed ML methods use a database, which was created only on the basis of information that is available to a DWDM network operator via the DWDM network control plane. Several types of ML classifiers are proposed and their performance is tested and compared for two real DWDM network topologies. The results obtained are promising and motivate further research.
骨干密集波分复用(DWDM)网络流量需求的不断增加促使引入新的解决方案,这些方案能够在不显著增加服务成本的情况下提高传输速度。为了更简单、快速地实现这一目标,需要DWDM网络重新配置程序。与网络重新配置本质相关的一个关键问题是传输质量评估问题。因此,在本论文中,提出了一种基于机器学习(ML)的传输质量评估方法。所提出的ML方法使用一个数据库,该数据库仅基于DWDM网络运营商通过DWDM网络控制平面可获得的信息创建。提出了几种类型的ML分类器,并针对两种实际的DWDM网络拓扑结构测试和比较了它们的性能。所获得的结果很有前景,并激发了进一步的研究。